人工智能技术在智能武器装备的研究与应用
Research and Application of Artificial Intelligence Technology in Intelligent Military Hardware
摘要: 这篇文章主要侧重于人工智能技术在智能武器装备中的研究与应用。描述了人工智能的定义,人工智能技术的发展以及美国对人工智能的重视。探讨了人工智能在智能武器装备中的关键技术,包括目标定位与识别技术、自主攻击技术、分布式作战或蜂群作战技术、作战机器人技术等,并进一步阐述了在关键技术中应该突破的技术性问题。列举了人工智能技术在智能武器装备中的应用实例,对人工智能技术的发展作了总结与展望。
Abstract: This article focuses on the research and the application of artificial intelligence technology in intel-ligent military hardware. It describes the definition of artificial intelligence, the development of ar-tificial intelligence technology and the importance the United States attaches to artificial intelli-gence. We discuss the core technologies of artificial intelligence in intelligent weapon equipment, including: target positioning and identification, autonomous attack, distributed operation or swarm operation, combat robot, and then expound on the technical problems that should be broken through in the key technologies. The application examples of artificial intelligence technology in in-telligent weapons and equipment are listed, and the development of artificial intelligence technol-ogy is summarized and prospected.
文章引用:杨作民. 人工智能技术在智能武器装备的研究与应用[J]. 人工智能与机器人研究, 2021, 10(3): 235-247. https://doi.org/10.12677/AIRR.2021.103024

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